基于深林模型的结晶预测--非布索坦案例研究

Crystals Pub Date : 2024-03-28 DOI:10.3390/cryst14040313
Jiahui Chen, Zhihui Li, Yanlei Kang, Zhong Li
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引用次数: 0

摘要

为了帮助筛选共晶体,本研究利用剑桥结构数据库(CSD)的数据开发了基于深林的共晶体预测模型。实验中的阳性样本来自 CSD。阴性样本部分来自其他论文中的失效记录,部分根据特定规则随机生成,共8576对。与传统机器学习方法的模型和简单的深度神经网络模型相比,深度森林模型具有更好的性能和更快的训练速度。在测试集上的准确率约为 95%。为了验证模型的有效性,我们还测试了非布索坦结晶筛选。我们的模型正确预测了共晶体的形成。这表明我们的模型在实践中是有用的。
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Cocrystal Prediction Based on Deep Forest Model—A Case Study of Febuxostat
To aid cocrystal screening, a deep forest-based cocrystal prediction model was developed in this study using data from the Cambridge Structural Database (CSD). The positive samples in the experiment came from the CSD. The negative samples were partly from the failure records in other papers, and some were randomly generated according to specific rules, resulting in a total of 8576 pairs. Compared with the models of traditional machine learning methods and simple deep neural networks models, the deep forest model has better performance and faster training speed. The accuracy is about 95% on the test set. Febuxostat cocrystal screening was also tested to verify the validity of the model. Our model correctly predicted the formation of cocrystal. It shows that our model is practically useful in practice.
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